A variational inference for the Levy adaptive regression with multiple kernels

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초록

This paper presents a variational Bayes approach to a Levy adaptive regression kernel (LARK) model that represents functions with an overcomplete system. In particular, we develop a variational inference method for a LARK model with multiple kernels (LARMuK) which estimates arbitrary functions that could have jump discontinuities. The algorithm is based on a variational Bayes approximation method with simulated annealing. We compare the proposed algorithm to a simulation-based reversible jump Markov chain Monte Carlo (RJMCMC) method using numerical experiments and discuss its potential and limitations.

키워드

Levy adaptive regression kernel modelMultiple kernelsSimulated annealingVariational BayesSELECTION
제목
A variational inference for the Levy adaptive regression with multiple kernels
저자
Lee, YoungseonJo, SeongilLee, Jaeyong
DOI
10.1007/s00180-022-01200-z
발행일
2022-11
유형
Article
저널명
Computational Statistics
37
5
페이지
2493 ~ 2515